A Pytorch Implementation of Source Data-free Domain Adaptation for a Faster R-CNN

Overview

A Pytorch Implementation of Source Data-free Domain Adaptation for a Faster R-CNN

Please follow Faster R-CNN and DAF to complete the environment configuration and experiment

Citation

@article{xiong2021source,
  title={Source data-free domain adaptation for a faster R-CNN},
  author={Xiong, Lin and Ye, Mao and Zhang, Dan and Gan, Yan and Liu, Yiguang},
  journal={Pattern Recognition},
  pages={108436},
  year={2021},
  publisher={Elsevier}
}
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